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AUSDM
2007
Springer

Detecting Anomalous Longitudinal Associations Through Higher Order Mining

13 years 10 months ago
Detecting Anomalous Longitudinal Associations Through Higher Order Mining
The detection of unusual or anomalous data is an important function in automated data analysis or data mining. However, the diversity of anomaly detection algorithms shows that it is often difficult to determine which algorithms might detect anomalies given any random dataset. In this paper we provide a partial solution to this problem by elevating the search for anomalous data in transaction-oriented datasets to an inspection of the rules that can be produced by higher order longitudinal/spatio-temporal association rule mining. In this way we are able to apply algorithms that may provide a view of anomalies that is arguably closer to that sought by information analysts.
Ping Liang, John F. Roddick
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where AUSDM
Authors Ping Liang, John F. Roddick
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